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    <title><![CDATA[Research Library - White Papers, Webcasts and Case Studies - TechRepublic ]]></title>
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        <title><![CDATA[Capturing the Real Influencing Factors of Traffic for Accurate Traffic Identification]]></title>
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        <description><![CDATA[In this paper, the authors introduce a novel framework for traffic identification that employs machine learning techniques focusing on the estimation of multiple traffic influencing factors. The...]]></description>
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        <pubDate>Sat, 17 Nov 2012 01:57:06 -0800</pubDate>
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